Title :
A constraint satisfaction language for intelligent self-correction of software-defined radio configurations
Author :
Wheeler, D.M. ; Angell, J. ; Hasan, Md Soyaeb
Author_Institution :
SecureComm, Inc., Gilbert, AZ, USA
Abstract :
This paper presents an embedded Artificial Intelligence (AI) engine based on Constraint Satisfaction Graphs (CSG) that enables rapid analysis and modification of networked Software Defined Radio (SDR) configurations. We developed a Constraint Satisfaction Language (CSL), an extensible AI framework for solving CSGs, and a set of unique strategy modules, and combined them to provide a scalable configuration troubleshooting tool for large complex SDR networks. These elements are combined into a tool called CINCH (Cognitive Interactive Network Configuration Helper). CINCH runs on an Android tablet, and can analyze hundreds of SDR configuration files, each with large numbers of parameters, in less than a minute. The extensible framework allows rapid support of additional SDR waveforms. In addition, the integration of this solution into a Cognitive Radio (CR) framework, to enable real-time modification of CR settings, is feasible with minimal effort.
Keywords :
cognitive radio; software radio; Android tablet; SDR configuration files; SDR waveforms; cognitive interactive network configuration helper; cognitive radio framework; constraint satisfaction graphs; constraint satisfaction language; embedded artificial intelligence engine; intelligent self correction; large complex SDR networks; networked software defined radio configuration; scalable configuration troubleshooting tool; Androids; Artificial intelligence; Cognitive radio; Couplings; Engines; Equations; Software radio;
Conference_Titel :
Wireless Information Technology and Systems (ICWITS), 2012 IEEE International Conference on
Conference_Location :
Maui, HI
Print_ISBN :
978-1-4673-0947-9
DOI :
10.1109/ICWITS.2012.6417766